To facilitate an increase in air traffic volume and to allow for more flexibility in the flight paths of aircraft, an abundance of decentralized conflict resolution (CR) algorithms have been developed. The efficiency of such algorithms often deteriorates when employed in high traffic densities. Several methods have tried to prioritize certain conflicts to alleviate part of the problems introduced at high traffic densities. However, manually establishing rules for prioritizing intruders is a difficult task due to the complex traffic patterns that emerge in multi-actor conflicts. Reinforcement Learning (RL) has demonstrated its ability to synthesize strategies while approximating the system dynamics. This research shows how RL can be employed...
To assist air traffic controllers (ATCOs) in resolving tactical conflicts, this paper proposes a con...
Current estimates show that the presence of unmanned aviation is likely to grow exponentially over t...
Deep reinforcement learning (DRL) has been widely adopted recently for its ability to solve decision...
Future operations involving drones are expected to result in traffic densities that are orders of ma...
Future operations involving drones are expected to result in traffic densities that are orders of ma...
Reinforcement learning (RL) techniques have been studied for solving the conflict resolution (CR) pr...
Increasing delays and congestion reported in many aviation sectors indicate that the current central...
Recently, the advances in reinforcement learning have enabled an artificial intelligent agent to sol...
Increasing delays and congestion reported in many aviation sectors indicate that the current central...
Future high traffic densities with drone operations are expected to exceed the number of aircraft th...
Future high traffic densities with drone operations are expected to exceed the number of aircraft th...
The use of drones for applications such as package delivery, in an urban setting, would result in tr...
The use of drones for applications such as package delivery, in an urban setting, would result in tr...
International audienceWith the continuous growth in the air transportation demand, air traffic contr...
International audienceWith the continuous growth in the air transportation demand, air traffic contr...
To assist air traffic controllers (ATCOs) in resolving tactical conflicts, this paper proposes a con...
Current estimates show that the presence of unmanned aviation is likely to grow exponentially over t...
Deep reinforcement learning (DRL) has been widely adopted recently for its ability to solve decision...
Future operations involving drones are expected to result in traffic densities that are orders of ma...
Future operations involving drones are expected to result in traffic densities that are orders of ma...
Reinforcement learning (RL) techniques have been studied for solving the conflict resolution (CR) pr...
Increasing delays and congestion reported in many aviation sectors indicate that the current central...
Recently, the advances in reinforcement learning have enabled an artificial intelligent agent to sol...
Increasing delays and congestion reported in many aviation sectors indicate that the current central...
Future high traffic densities with drone operations are expected to exceed the number of aircraft th...
Future high traffic densities with drone operations are expected to exceed the number of aircraft th...
The use of drones for applications such as package delivery, in an urban setting, would result in tr...
The use of drones for applications such as package delivery, in an urban setting, would result in tr...
International audienceWith the continuous growth in the air transportation demand, air traffic contr...
International audienceWith the continuous growth in the air transportation demand, air traffic contr...
To assist air traffic controllers (ATCOs) in resolving tactical conflicts, this paper proposes a con...
Current estimates show that the presence of unmanned aviation is likely to grow exponentially over t...
Deep reinforcement learning (DRL) has been widely adopted recently for its ability to solve decision...